TY - JOUR
T1 - Decision Making Model for Municipal Wastewater Conventional Secondary Treatment with Bayesian Networks
AU - Medina, Edgardo
AU - Fonseca, Carlos Roberto
AU - Gallego-Alarcón, Iván
AU - Morales Napoles, O.
AU - Gómez-Albores, Miguel Angel
AU - Esparza-Soto, Mario
AU - Mastachi-Loza, Carlos Alberto
AU - García-Pulido, Daury
PY - 2022
Y1 - 2022
N2 - Technical, economic, regulatory, environmental, and social and political interests make the process of selecting an appropriate wastewater treatment technology complex. Although this problem has already been addressed from the dimensioning approach, our proposal in this research, a model of decision making for conventional secondary treatment of municipal wastewater through continuous-discrete, non-parametric Bayesian networks was developed. The most suitable network was structured in unit processes, independent of each other. Validation, with data in a mostly Mexican context, provided a positive predictive power of 83.5%, an excellent kappa (0.77 > 0.75), and the criterion line was surpassed with the location of the model in a receiver operating characteristic (ROC) graph, so the model can be implemented in this region. The final configuration of the Bayesian network allows the methodology to be easily extended to other types of treatments, wastewater, and to other regions.
AB - Technical, economic, regulatory, environmental, and social and political interests make the process of selecting an appropriate wastewater treatment technology complex. Although this problem has already been addressed from the dimensioning approach, our proposal in this research, a model of decision making for conventional secondary treatment of municipal wastewater through continuous-discrete, non-parametric Bayesian networks was developed. The most suitable network was structured in unit processes, independent of each other. Validation, with data in a mostly Mexican context, provided a positive predictive power of 83.5%, an excellent kappa (0.77 > 0.75), and the criterion line was surpassed with the location of the model in a receiver operating characteristic (ROC) graph, so the model can be implemented in this region. The final configuration of the Bayesian network allows the methodology to be easily extended to other types of treatments, wastewater, and to other regions.
KW - decision making model
KW - wastewater secondary treatment
KW - Bayesian networks
KW - structured expert judgment
UR - http://www.scopus.com/inward/record.url?scp=85128872816&partnerID=8YFLogxK
U2 - 10.3390/w14081231
DO - 10.3390/w14081231
M3 - Article
SN - 2073-4441
VL - 14
JO - Water
JF - Water
IS - 8
M1 - 1231
ER -